Hierarchical Bayesian Approach For Jointly-Sparse Solution Of Multiple-Measurement Vectors.

Mohammad Shekaramiz, Todd K Moon, Jacob H Gunther
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引用次数: 21

Abstract

It is well-known that many signals of interest can be well-estimated via just a small number of supports under some specific basis. Here, we consider finding sparse solution for Multiple Measurement Vectors (MMVs) in case of having both jointly sparse and clumpy structure. Most of the previous work for finding such sparse representations are based on greedy and sub-optimal algorithms such as Basis Pursuit (BP), Matching Pursuit (MP), and Orthogonal Matching Pursuit (OMP). In this paper, we first propose a hierarchical Bayesian model to deal with MMVs that have jointly-sparse structure in their solutions. Then, the model is modified to account for clumps of the neighbor supports (block sparsity) in the solution structure, as well. Several examples are considered to illustrate the merit of the proposed hierarchical Bayesian model compared to OMP and a modified version of the OMP algorithm.

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多测量向量联合稀疏解的层次贝叶斯方法。
众所周知,许多感兴趣的信号可以通过在某些特定基础下的少量支持来很好地估计。在这里,我们考虑在同时具有稀疏和团块结构的情况下寻找多个测量向量(mmv)的稀疏解。以前寻找这种稀疏表示的大多数工作都是基于贪婪和次优算法,如基追踪(BP),匹配追踪(MP)和正交匹配追踪(OMP)。本文首先提出了一种层次贝叶斯模型来处理解中具有联合稀疏结构的mmv。然后,对模型进行修改,以考虑解决方案结构中相邻支持的团块(块稀疏性)。考虑了几个例子来说明所提出的层次贝叶斯模型与OMP和修改版本的OMP算法相比的优点。
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